Use of Artificial Intelligence in Recognition of Fetal Open Neural Tube Defect on Prenatal Ultrasound

Kumar, Manisha ; Arora, Urvashi ; Sengupta, Debarka ; Nain, Shilpi ; Meena, Deepika ; Yadav, Reena ; Perez, Miriam (2025) Use of Artificial Intelligence in Recognition of Fetal Open Neural Tube Defect on Prenatal Ultrasound American Journal of Perinatology, 43 (01). 056-063. ISSN 0735-1631

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Official URL: https://doi.org/10.1055/a-2589-3554

Related URL: http://dx.doi.org/10.1055/a-2589-3554

Abstract

Objective This study aimed to compare the axial cranial ultrasound images of normal and open neural tube defect (NTD) fetuses using a deep learning (DL) model and to assess its predictive accuracy in identifying open NTD. Study Design It was a prospective case-control study. Axial trans-thalamic fetal ultrasound images of participants with open fetal NTD and normal controls between 14 and 28 weeks of gestation were taken after consent. The images were divided into training, testing, and validation datasets randomly in the ratio of 70:15:15. The images were further processed and classified using DL convolutional neural network (CNN) transfer learning (TL) models. The TL models were trained for 50 epochs. The data was analyzed in terms of Cohen kappa score, accuracy score, area under receiver operating curve (AUROC) score, F1 score validity, sensitivity, and specificity of the test. Results A total of 59 cases and 116 controls were fully followed. Efficient net B0, Visual Geometry Group (VGG), and Inception V3 TL models were used. Both Efficient net B0 and VGG16 models gave similar high training and validation accuracy (100 and 95.83%, respectively). Using inception V3, the training and validation accuracy was 98.28 and 95.83%, respectively. The sensitivity and specificity of Efficient NetB0 was 100 and 89%, respectively, and was the best. Conclusion The analysis of the changes in axial images of the fetal cranium using the DL model, Efficient Net B0 proved to be an effective model to be used in clinical application for the identification of open NTD.

Item Type:Article
Source:Copyright of this article belongs to Georg Thieme Verlag KG.
Keywords:Deep learning; Convolutional neural network; Ultrasound; Artificial intelligence; Machine learning.
ID Code:142550
Deposited On:24 Jan 2026 12:37
Last Modified:24 Jan 2026 12:37

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